用于检测网络内容中仇恨言论的机器学习模型分析

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引用次数: 0

摘要

互联网已成为人们表达观点和信仰的重要平台。社交媒体平台和博客服务上的用户可以自由发布他们喜欢的任何内容。但偶尔也会出现一些针对特定群体的信息,意在宣扬仇恨或歧视,给社会带来麻烦。我们将此类材料称为仇恨言论。仇恨言论有可能严重破坏社会和平与和谐。仇恨言论有时会导致极端主义和社会不稳定。我们将介绍仇恨言论的几种形式,如种族主义、性别歧视、基于宗教的仇恨言论等,并介绍打击这些言论的方法。此外,我们还列出了在开放互联网上识别仇恨言论的问题,并提供了解决方法。因此,有必要对互联网上的仇恨言论进行监控。本文分析了仇恨言论检测领域的相关研究。我们提出的系统不仅能识别互联网上的仇恨言论,还能将其分为不同类别,如(攻击性言论、仇恨言论、公平言论等),收集到的信息经过处理后可提供仇恨言论报告,这将使使用互联网的用户更加友好。
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Analysis of Machine Learning Models for Hate Speech Detection in Online Content
The internet has become a vital platform for people to express their views and beliefs. The users on social media platforms and blogging services are free to publish anything they like. But occasionally, information that targets a particular group of people intending to promote hate or discrimination rises causing trouble in the community. We refer to such material as hate speech. Hate speech has the potential to significantly damage social peace and harmony. Extremism and societal instability have occasionally resulted from hate speech. The several forms of hate speech like racism, sexism, hate speech based on religion, etc.—as well as the approaches put out to combat them are covered. Additionally, we list the problems and provide fixes for issues with hate speech identification on the open internet. Therefore, it is necessary to monitor hate speech on the internet. We analyze relevant research in the field of hate speech detection in this paper. Our proposed system not only identify the Hate Speech on internet but also label them into categories like (Offensive Speech, Hate Speech, fair Speech etc.) The gathered information can be processed to provide Hate speech reports, which will make the internet more user-friendly for anyone using it.
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